DeepLab-ResNet rebuilt in TensorFlow

Overview

DeepLab-ResNet-TensorFlow

Build Status

This is an (re-)implementation of DeepLab-ResNet in TensorFlow for semantic image segmentation on the PASCAL VOC dataset.

Frequently Asked Questions

If you encounter some problems and would like to create an issue, please read this first. If the guide below does not cover your question, please use search to see if a similar issue has already been solved before. Finally, if you are unable to find an answer, please fill in the issue with details of your problem provided.

Which python version should I use?

All the experiments are been done using python2.7. python3 will likely require some minor modifications.

After training, I have multiple files that look like model.ckpt-xxxx.index, model.ckpt-xxxx.dataxxxx and model.ckpt-xxxx.meta. Which one of them should I use to restore the model for inference?

Instead of providing a path to one of those files, you must provide just model.ckpt-xxxx. It will fetch other files.

My model is not learning anything. What should I do?

First, check that your images are being read correctly. The setup implies that segmentation masks are saved without a colour map, i.e., each pixel contains a class index, not an RGB value. Second, tune your hyperparameters. As there are no general strategies that work for each case, the design of this procedure is up to you.

I want to use my own dataset. What should I do?

Please refer to this topic.

Updates

29 Jan, 2017:

  • Fixed the implementation of the batch normalisation layer: it now supports both the training and inference steps. If the flag --is-training is provided, the running means and variances will be updated; otherwise, they will be kept intact. The .ckpt files have been updated accordingly - to download please refer to the new link provided below.
  • Image summaries during the training process can now be seen using TensorBoard.
  • Fixed the evaluation procedure: the 'void' label (255) is now correctly ignored. As a result, the performance score on the validation set has increased to 80.1%.

11 Feb, 2017:

  • The training script train.py has been re-written following the original optimisation setup: SGD with momentum, weight decay, learning rate with polynomial decay, different learning rates for different layers, ignoring the 'void' label (255).
  • The training script with multi-scale inputs train_msc.py has been added: the input is resized to 0.5 and 0.75 of the original resolution, and 4 losses are aggregated: loss on the original resolution, on the 0.75 resolution, on the 0.5 resolution, and loss on the all fused outputs.
  • Evaluation of a single-scale converted pre-trained model on the PASCAL VOC validation dataset (using 'SegmentationClassAug') leads to 86.9% mIoU (as trainval was likely to be used for final training). This is confirmed by the official PASCAL VOC server. The score on the test dataset is 75.8%.

22 Feb, 2017:

  • The training script with multi-scale inputs train_msc.py now supports gradients accumulation: the relevant parameter --grad-update-every effectively mimics the behaviour of iter_size of Caffe. This allows to use batches of bigger sizes with less GPU memory being consumed. (Thanks to @arslan-chaudhry for this contribution!)
  • The random mirror and random crop options have been added. (Again big thanks to @arslan-chaudhry !)

23 Apr, 2017:

  • TensorFlow 1.1.0 is now supported.
  • Three new flags --num-classes, --ignore-label and --not-restore-last are added to ease the usability of the scripts on new datasets. Check out these instructions on how to set up the training process on your dataset.

Model Description

The DeepLab-ResNet is built on a fully convolutional variant of ResNet-101 with atrous (dilated) convolutions, atrous spatial pyramid pooling, and multi-scale inputs (not implemented here).

The model is trained on a mini-batch of images and corresponding ground truth masks with the softmax classifier at the top. During training, the masks are downsampled to match the size of the output from the network; during inference, to acquire the output of the same size as the input, bilinear upsampling is applied. The final segmentation mask is computed using argmax over the logits. Optionally, a fully-connected probabilistic graphical model, namely, CRF, can be applied to refine the final predictions. On the test set of PASCAL VOC, the model achieves 79.7% of mean intersection-over-union.

For more details on the underlying model please refer to the following paper:

@article{CP2016Deeplab,
  title={DeepLab: Semantic Image Segmentation with Deep Convolutional Nets, Atrous Convolution, and Fully Connected CRFs},
  author={Liang-Chieh Chen and George Papandreou and Iasonas Kokkinos and Kevin Murphy and Alan L Yuille},
  journal={arXiv:1606.00915},
  year={2016}
}

Requirements

TensorFlow needs to be installed before running the scripts. TensorFlow v1.1.0 is supported; for TensorFlow v0.12 please refer to this branch; for TensorFlow v0.11 please refer to this branch. Note that those branches may not have the same functional as the current master.

To install the required python packages (except TensorFlow), run

pip install -r requirements.txt

or for a local installation

pip install --user -r requirements.txt

Caffe to TensorFlow conversion

To imitate the structure of the model, we have used .caffemodel files provided by the authors. The conversion has been performed using Caffe to TensorFlow with an additional configuration for atrous convolution and batch normalisation (since the batch normalisation provided by Caffe-tensorflow only supports inference). There is no need to perform the conversion yourself as you can download the already converted models - deeplab_resnet.ckpt (pre-trained) and deeplab_resnet_init.ckpt (the last layers are randomly initialised) - here.

Nevertheless, it is easy to perform the conversion manually, given that the appropriate .caffemodel file has been downloaded, and Caffe to TensorFlow dependencies have been installed. The Caffe model definition is provided in misc/deploy.prototxt. To extract weights from .caffemodel, run the following:

python convert.py /path/to/deploy/prototxt --caffemodel /path/to/caffemodel --data-output-path /where/to/save/numpy/weights

As a result of running the command above, the model weights will be stored in /where/to/save/numpy/weights. To convert them to the native TensorFlow format (.ckpt), simply execute:

python npy2ckpt.py /where/to/save/numpy/weights --save-dir=/where/to/save/ckpt/weights

Dataset and Training

To train the network, one can use the augmented PASCAL VOC 2012 dataset with 10582 images for training and 1449 images for validation.

The training script allows to monitor the progress in the optimisation process using TensorBoard's image summary. Besides that, one can also exploit random scaling and mirroring of the inputs during training as a means for data augmentation. For example, to train the model from scratch with random scale and mirroring turned on, simply run:

python train.py --random-mirror --random-scale

To see the documentation on each of the training settings run the following:

python train.py --help

An additional script, fine_tune.py, demonstrates how to train only the last layers of the network. The script train_msc.py with multi-scale inputs fully resembles the training setup of the original model.

Evaluation

The single-scale model shows 86.9% mIoU on the Pascal VOC 2012 validation dataset ('SegmentationClassAug'). No post-processing step with CRF is applied.

The following command provides the description of each of the evaluation settings:

python evaluate.py --help

Inference

To perform inference over your own images, use the following command:

python inference.py /path/to/your/image /path/to/ckpt/file

This will run the forward pass and save the resulted mask with this colour map:

Using your dataset

In order to apply the same scripts using your own dataset, you would need to follow the next steps:

  1. Make sure that your segmentation masks are in the same format as the ones in the DeepLab setup (i.e., without a colour map). This means that if your segmentation masks are RGB images, you would need to convert each 3-D RGB vector into a 1-D label. For example, take a look here;
  2. Create a file with instances of your dataset in the same format as in files here;
  3. Change the flags data-dir and data-list accordingly in thehttps://gist.github.com/DrSleep/4bce37254c5900545e6b65f6a0858b9c); script file that you will be using (e.g., python train.py --data-dir /my/data/dir --data-list /my/data/list);
  4. Change the IMG_MEAN vector accordingly in the script file that you will be using;
  5. For visualisation purposes, you will also need to change the colour map here;
  6. Change the flags num-classes and ignore-label accordingly in the script that you will be using (e.g., python train.py --ignore-label 255 --num-classes 21).
  7. If restoring weights from the PASCAL models for your dataset with a different number of classes, you will also need to pass the --not-restore-last flag, which will prevent the last layers of size 21 from being restored.

Missing features

The post-processing step with CRF is currently being implemented here.

Other implementations

Owner
Vladimir
ML/CV enthusiast
Vladimir
Fuzzer for Linux Kernel Drivers

difuze: Fuzzer for Linux Kernel Drivers This repo contains all the sources (including setup scripts), you need to get difuze up and running. Tested on

seclab 344 Dec 27, 2022
Angora is a mutation-based fuzzer. The main goal of Angora is to increase branch coverage by solving path constraints without symbolic execution.

Angora Angora is a mutation-based coverage guided fuzzer. The main goal of Angora is to increase branch coverage by solving path constraints without s

833 Jan 07, 2023
The source code for Generating Training Data with Language Models: Towards Zero-Shot Language Understanding.

SuperGen The source code for Generating Training Data with Language Models: Towards Zero-Shot Language Understanding. Requirements Before running, you

Yu Meng 38 Dec 12, 2022
Attempt at implementation of a simple GAN using Keras

Simple GAN This is my attempt to make a wrapper class for a GAN in keras which can be used to abstract the whole architecture process. Simple GAN Over

Deven96 7 May 23, 2019
A tensorflow/keras implementation of StyleGAN to generate images of new Pokemon.

PokeGAN A tensorflow/keras implementation of StyleGAN to generate images of new Pokemon. Dataset The model has been trained on dataset that includes 8

19 Jul 26, 2022
Codebase for the Summary Loop paper at ACL2020

Summary Loop This repository contains the code for ACL2020 paper: The Summary Loop: Learning to Write Abstractive Summaries Without Examples. Training

Canny Lab @ The University of California, Berkeley 44 Nov 04, 2022
RNG-KBQA: Generation Augmented Iterative Ranking for Knowledge Base Question Answering

RNG-KBQA: Generation Augmented Iterative Ranking for Knowledge Base Question Answering Authors: Xi Ye, Semih Yavuz, Kazuma Hashimoto, Yingbo Zhou and

Salesforce 72 Dec 05, 2022
一套完整的微博舆情分析流程代码,包括微博爬虫、LDA主题分析和情感分析。

已经将项目的关键文件上传,包含微博爬虫、LDA主题分析和情感分析三个部分。 1.微博爬虫 实现微博评论爬取和微博用户信息爬取,一天大概十万条。 2.LDA主题分析 实现文档主题抽取,包括数据清洗及分词、主题数的确定(主题一致性和困惑度)和最优主题模型的选择(暴力搜索)。 3.情感分析 实现评论文本的

182 Jan 02, 2023
Code repository for our paper "Learning to Generate Scene Graph from Natural Language Supervision" in ICCV 2021

Scene Graph Generation from Natural Language Supervision This repository includes the Pytorch code for our paper "Learning to Generate Scene Graph fro

Yiwu Zhong 64 Dec 24, 2022
An official reimplementation of the method described in the INTERSPEECH 2021 paper - Speech Resynthesis from Discrete Disentangled Self-Supervised Representations.

Speech Resynthesis from Discrete Disentangled Self-Supervised Representations Implementation of the method described in the Speech Resynthesis from Di

Facebook Research 253 Jan 06, 2023
Code for Environment Dynamics Decomposition (ED2).

ED2 Code for Environment Dynamics Decomposition (ED2). Installation Follow the installation in MBPO and Dreamer. Usage First follow the SD2 method for

0 Aug 10, 2021
This is a template for the Non-autoregressive Deep Learning-Based TTS model (in PyTorch).

Non-autoregressive Deep Learning-Based TTS Template This is a template for the Non-autoregressive TTS model. It contains Data Preprocessing Pipeline D

Keon Lee 13 Dec 05, 2022
fklearn: Functional Machine Learning

fklearn: Functional Machine Learning fklearn uses functional programming principles to make it easier to solve real problems with Machine Learning. Th

nubank 1.4k Dec 07, 2022
Based on Yolo's low-power, ultra-lightweight universal target detection algorithm, the parameter is only 250k, and the speed of the smart phone mobile terminal can reach ~300fps+

Based on Yolo's low-power, ultra-lightweight universal target detection algorithm, the parameter is only 250k, and the speed of the smart phone mobile terminal can reach ~300fps+

567 Dec 26, 2022
Method for facial emotion recognition compitition of Xunfei and Datawhale .

人脸情绪识别挑战赛-第3名-W03KFgNOc-源代码、模型以及说明文档 队名:W03KFgNOc 排名:3 正确率: 0.75564 队员:yyMoming,xkwang,RichardoMu。 比赛链接:人脸情绪识别挑战赛 文章地址:link emotion 该项目分别训练八个模型并生成csv文

6 Oct 17, 2022
Create UIs for prototyping your machine learning model in 3 minutes

Note: We just launched Hosted, where anyone can upload their interface for permanent hosting. Check it out! Welcome to Gradio Quickly create customiza

Gradio 11.7k Jan 07, 2023
Implementation of Artificial Neural Network Algorithm

Artificial Neural Network This repository contain implementation of Artificial Neural Network Algorithm in several programming languanges and framewor

Resha Dwika Hefni Al-Fahsi 1 Sep 14, 2022
Code for "Causal autoregressive flows" - AISTATS, 2021

Code for "Causal Autoregressive Flow" This repository contains code to run and reproduce experiments presented in Causal Autoregressive Flows, present

Ricardo Pio Monti 35 Dec 16, 2022
Code and Resources for the Transformer Encoder Reasoning Network (TERN)

Transformer Encoder Reasoning Network Code for the cross-modal visual-linguistic retrieval method from "Transformer Reasoning Network for Image-Text M

Nicola Messina 53 Dec 30, 2022